4.7 Article

Adaptive and Robust Sparse Coding for Laser Range Data Denoising and Inpainting

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2015.2492859

Keywords

Adaptive and robust sparse coding (SC); denoising; dictionary learning; inpainting; laser range data

Funding

  1. Theory and Methods of Digital Conservation for Cultural Heritage [2012CB725300]
  2. National Natural Science Fund of China [NSFC 41101409]
  3. National Basic Research Program of China [2012CB725301]
  4. National Surveying and Mapping Geographic Information Public Welfare Industry Special Funding Scientific Research Projects [210600001]

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Sparse coding (SC) is making a significant impact in computer vision and signal processing communities, which achieves the state-of-the-art performance in a variety of applications for images, e.g., denoising, restoration, and synthesis. We propose an adaptive and robust SC algorithm exploiting the characteristics of typical laser range data and the availability of both range and reflectance data to realize range data denoising and inpainting. Specifically, our method estimates the informative level of each patch according to the variation in both range and reflectance modalities, followed by adaptive dictionary training that assigns dynamic sparsity weights to the patches with different informative levels. Furthermore, the l(1)-norm-based representation fidelity measure is applied to make our method robust to outliers which are common in laser range measurements. Extensive experiments on synthetic and real data demonstrate that our method works effectively, resulting in superior performance both visually and quantitatively, compared with competitive methods including the available sparse-representation-based algorithm, wavelets, partial differential equation, and non-local means.

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